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Invest Like the Best with Patrick O'Shaughnessy
Jeremiah Lowin – Machine Learning in Investing – [Invest Like the Best, EP.105]
Invest Like the Best with Patrick O'Shaughnessy

Jeremiah Lowin – Machine Learning in Investing – [Invest Like the Best, EP.105]

Colossus | Investing & Business Podcasts 1h 1m 92 months ago
Conversations with the best investors and business leaders in the world. We explore their ideas, methods, and stories to help you better invest your time and money. Hear stock market and boardroom insights you can't find anywhere else. If you're a professional investor, CEO, entrepreneur, or business strategist, this is for you. Explore all our episodes and learn more at https://www.colossus.com
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Show Notes

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My guest this week is one of my best and oldest friends, Jeremiah Lowin. Jeremiah has had a fascinating career, starting with advanced work in statistics before moving into the risk management field in the hedge fund world. Through his career he has studied data, risk, statistics, and machine learning—the last of which is the topic of our conversation today. 
He has now left the world of finance to found a company called Prefect, which is a framework for building data infrastructure. Prefect was inspired by observing frictions between data scientists and data engineers, and solves these problems with a functional API for defining and executing data workflows. These problems, while wonky, are ones I can relate to working in quantitative investing—and others that suffer from them out there will be nodding their heads. In full and fair disclosure, both me and my family are investors in Jeremiah’s business.
You won’t have to worry about that potential conflict of interest in today’s conversation, though, because our focus is on the deployment of machine learning technologies in the realm of investing. What I love about talking to Jeremiah is that he is an optimist and a skeptic. He loves working with new statistical learning technologies, but often thinks they are overhyped or entirely unsuited to the tasks they are being used for. We get into some deep detail on how tests are set up, the importance of data, and how the minimization of error is a guiding light in machine learning and perhaps all of human learning, too. Let’s dive in.
For more episodes go to InvestorFieldGuide.com/podcast.
Sign up for the book club, where you’ll get a full investor curriculum and then 3-4 suggestions every month at InvestorFieldGuide.com/bookclub.
Follow Patrick on Twitter at @patrick_oshag
Show Notes
(First Question) – What do people need to think about when considering using machine learning tools
– Types of problems that AI is perfect for
– Walking through an actual test and understanding the terminology
– Data in training: training set, test set, validation set
– The difference between machine learning and classical academic finance modelling
– What will the future of investing look like using these technologies
– The concept of stationarity
– Why you shouldn’t take for granted label formation in tests
– Ability for a model to shrug
– Hyper parameter tuning
– Categories of types of models
– Idea of a nearest neighbor or K-Means Algorithm
– Trees as the ultimate utility player in this landscape
– Features and data sets as the driver of edge in Machine Learning
– Key considerations when working through time series
– Pitfalls he has seen when folks try to build predictive market investing models
– Getting started
– Looking back at his career, what are some of the frontier vs settled applications of machine learning he has implemented
– Does intereptability matter in all of this
– How gradient decent fits into this whole picture  
 
Learn More
For more episodes go to InvestorFieldGuide.com/podcast. 
Sign up for the book club, where you’ll get a full investor curriculum and then 3-4 suggestions every month at InvestorFieldGuide.com/bookclub
Follow Patrick on twitter at @patrick_oshag

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